Performance Study of Various Sparse Representation Methods Using Redundant Frames

M. Akçakaya, V. Tarokh
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引用次数: 3

Abstract

Sparse representations have recently received wide attention because of their numerous potential applications. In this paper, we consider sparse representations of signals with at most L non-zero coefficients using a frame F of size M in CN. We bound the average distortion of such a representation for any arbitrary frame F by a numerical lower bound that is only a function of the sparsity epsiv = L/N of the representation, and the redundancy (r-1) = M/N-1 of F. This numerical lower bound is shown to be much stronger than the analytical and asymptotic bounds of in low dimensions (e.g. N = 6,8, 10), but it is much less straightforward to compute. We then study the performance of randomly generated frames with respect to this numerical lower bound, and to the analytical and asymptotic bounds. When the optimal sparse representation algorithm is used, it is observed that randomly generated frames perform about 2 dB away from the theoretical lower bound in low dimensions. We use the greedy orthogonal matching pursuit (OMP) algorithm to study the performance of randomly generated frames in higher dimensions. For small values of epsiv, randomly generated frames using OMP perform close to the lower bound and the results suggest that the loss of the sub-optimal search using orthogonal matching pursuit algorithm grows as a function of epsiv. As N grows, a concentration phenomenon for the performance of randomly generated frames about their average is observed in all cases, even when using the OMP algorithm.
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利用冗余帧的各种稀疏表示方法的性能研究
稀疏表示由于具有广泛的应用前景而受到广泛的关注。在本文中,我们考虑在CN中使用大小为M的帧F来表示最多有L个非零系数的信号的稀疏表示。我们用一个数值下界来限定任意框架F的这种表示的平均畸变,该下界仅是表示的稀疏性epsiv = L/N的函数,并且F的冗余(r-1) = M/N-1。这个数值下界被证明比低维(例如N = 6,8,10)的解析和渐近边界强得多,但它的计算要简单得多。然后,我们研究了随机生成的框架在这个数值下界、解析界和渐近界方面的性能。当使用最优稀疏表示算法时,观察到随机生成的帧在低维情况下的表现与理论下界相差约2db。我们使用贪婪正交匹配追踪(OMP)算法来研究高维随机生成帧的性能。对于较小的epsiv值,使用OMP随机生成的帧的性能接近下界,结果表明,使用正交匹配追踪算法的次优搜索损失随着epsiv的函数而增长。随着N的增长,在所有情况下,即使使用OMP算法,也可以观察到随机生成帧的性能的集中现象。
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